CytoImageNet: A large-scale pretraining dataset for bioimage transfer learning

23 Nov 2021  ·  Stanley Bryan Z. Hua, Alex X. Lu, Alan M. Moses ·

Motivation: In recent years, image-based biological assays have steadily become high-throughput, sparking a need for fast automated methods to extract biologically-meaningful information from hundreds of thousands of images. Taking inspiration from the success of ImageNet, we curate CytoImageNet, a large-scale dataset of openly-sourced and weakly-labeled microscopy images (890K images, 894 classes). Pretraining on CytoImageNet yields features that are competitive to ImageNet features on downstream microscopy classification tasks. We show evidence that CytoImageNet features capture information not available in ImageNet-trained features. The dataset is made available at https://www.kaggle.com/stanleyhua/cytoimagenet.

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Datasets


Introduced in the Paper:

CytoImageNet

Used in the Paper:

ImageNet

Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
BBBC021 NSC Accuracy CytoImageNet Concatenated Features from CytoImageNet and ImageNet EfficientNetB0 Classification Accuracy 86.41 # 1
CYCLoPs Accuracy CytoImageNet Concatenated Features from CytoImageNet and ImageNet EfficientNetB0 Classification Accuracy 77.97 # 1

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